AlBahar, AreejKim, InyoungYue, Xiaowei2022-02-052022-02-052021-09-291545-5955http://hdl.handle.net/10919/108145Some response surface functions in complex engineering systems are usually highly nonlinear, unformed, and expensive to evaluate. To tackle this challenge, Bayesian optimization (BO), which conducts sequential design via a posterior distribution over the objective function, is a critical method used to find the global optimum of black-box functions. Kernel functions play an important role in shaping the posterior distribution of the estimated function. The widely used kernel function, e.g., radial basis function (RBF), is very vulnerable and susceptible to outliers; the existence of outliers is causing its Gaussian process (GP) surrogate model to be sporadic. In this article, we propose a robust kernel function, asymmetric elastic net radial basis function (AEN-RBF). Its validity as a kernel function and computational complexity are evaluated. When compared with the baseline RBF kernel, we prove theoretically that AEN-RBF can realize smaller mean squared prediction error under mild conditions. The proposed AEN-RBF kernel function can also realize faster convergence to the global optimum. We also show that the AEN-RBF kernel function is less sensitive to outliers, and hence improves the robustness of the corresponding BO with GPs. Through extensive evaluations carried out on synthetic and real-world optimization problems, we show that AEN-RBF outperforms the existing benchmark kernel functions.12 page(s)application/pdfenIn CopyrightAutomation & Control SystemsKernelOptimizationLinear programmingModelingBayes methodsProbabilistic logicComputational modelingAdvanced manufacturingBayesian optimization (BO)defect detectionGaussian process (GP)process optimizationGAUSSIAN-PROCESSESSELECTIONIndustrial Engineering & Automation0906 Electrical and Electronic Engineering0910 Manufacturing Engineering0913 Mechanical EngineeringA Robust Asymmetric Kernel Function for Bayesian Optimization, With Application to Image Defect Detection in Manufacturing SystemsArticle - Refereed2022-02-05IEEE Transactions on Automation Science and Engineeringhttps://doi.org/10.1109/TASE.2021.3114157PP99Yue, Xiaowei [0000-0001-6019-0940]1558-3783